Real-time human detection and behavior recognition using low-cost hardware

Bojun Wang, Sajid Ali, Xinyi Fan, Tamer Abuhmed
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引用次数: 1

Abstract

Cameras are becoming more pervasive and ubiquitous. The daily activities of individuals are being captured by millions of cameras in public spaces, while individuals are obtaining massive amounts of egocentric videos by employing wearable cameras intended for life-logging. However, recording devices are inexpensive, highly computational, and inconvenient for privacy. We used a low-resolution infrared sensor to detect human activity, including sitting, standing, and lying down, and to locate humans. We acquired the data from a low-cost infrared device and preprocessed them to train the YOLO-v5 network. We developed and tested an infrared technology-based system consisting of $32 \times 24$ thermal input. Our proposed model is trained on 3,864 low-resolution images and made publicly available. The trained YOLO-v5 achieved 96.34% mean Average Precision (mAP) using our designed lightweight and low-cost activity recognition device. We proposed Artificial Intelligence of Things (A-IoT) system can be used either as a stand-alone data collection such as an IoT device or as a data processing and analysis sub-center. Our system consists of a low-power edge computing device and a cost-effective low-resolution infrared module. Our proposed dataset is now available at https://github.com/InfoLab-SKKU/Thermal-Human-Detection
使用低成本硬件的实时人体检测和行为识别
相机正变得越来越普遍和无处不在。个人的日常活动被公共场所数以百万计的摄像头捕捉,而个人则通过使用用于记录生活的可穿戴相机获得了大量以自我为中心的视频。然而,记录设备价格低廉,计算能力强,不便于保护隐私。我们使用了一个低分辨率的红外传感器来探测人类的活动,包括坐着、站着和躺着,并定位人类。我们从低成本的红外设备上获取数据,并对其进行预处理以训练YOLO-v5网络。我们开发并测试了一个基于红外技术的系统,该系统由$32 \ × 24$热输入组成。我们提出的模型是在3864张低分辨率图像上训练的,并公开提供。使用我们设计的轻量化和低成本的活动识别装置,训练后的YOLO-v5平均平均精度(mAP)达到96.34%。我们提出物联网(a -IoT)系统既可以作为物联网设备的独立数据收集,也可以作为数据处理和分析的子中心。我们的系统由一个低功耗边缘计算设备和一个低成本的低分辨率红外模块组成。我们建议的数据集现在可以在https://github.com/InfoLab-SKKU/Thermal-Human-Detection上获得
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